IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

Analysis of Valuable Techniques and Algorithms Used in Automated Skin Lesion Recognition Systems

Analysis of Valuable Techniques and Algorithms Used in Automated Skin Lesion Recognition Systems
View Sample PDF
Author(s): Uzma Jamil (Bahria University Islamabad, Pakistan & Government College University, Pakistan)and Shehzad Khalid (Bahria University Islamabad, Pakistan)
Copyright: 2017
Pages: 17
Source title: Oncology: Breakthroughs in Research and Practice
Source Author(s)/Editor(s): Information Resources Management Association (USA)
DOI: 10.4018/978-1-5225-0549-5.ch019

Purchase

View Analysis of Valuable Techniques and Algorithms Used in Automated Skin Lesion Recognition Systems on the publisher's website for pricing and purchasing information.

Abstract

Application of computational intelligence techniques helps physicians as well as dermatologists in faster data process to give better and more reliable diagnoses. The whole system is categorized as: Pre-processing the lesion image to enhance its readability, Segmentation of the Lesion from skin, Feature extraction, selection, and finally the identification of dermoscopic images. Pros and cons of various methods are focused to provide a help for the researchers starting work in automated lesion detection system. Numerous computerized diagnostic systems have been reported in which different border detection, feature extraction, selection, and classification algorithms are used. The aim of this review is to summarize and compare advanced dermoscopic algorithms used for the classification of skin lesions and discuss important issues affecting the success of classification. This paper will be a guide that represents a comprehensive guideline for selecting suitable algorithms needed for different steps of automatic diagnostic procedure for ensuring timely diagnosis of skin cancer.

Related Content

Genevieve Z. Steiner-Lim, Madilyn Coles, Kayla Jaye, Najwa-Joelle Metri, Ali S. Butt, Katerina Christofides, Jackson McPartland, Zainab Al-Modhefer, Diana Karamacoska, Ethan Russo, Tim Karl. © 2023. 47 pages.
Mohd Kashif, Mohammad Waseem, Poornima D. Vijendra, Ashok Kumar Pandurangan. © 2023. 28 pages.
Courtney R. Acker, Rana R. Zeine. © 2023. 27 pages.
Mahesh Pattabhiramaiah, Shanthala Mallikarjunaiah. © 2023. 16 pages.
Dhairavi Shah, Dhaara Shah, Yara Mohamed, Danna Rosas, Alyssa Moffitt, Theresa Hearn Haynes, Francis Cortes, Taunjah Bell Neasman, Phani kumar Kathari, Ana Villagran, Rana R. Zeine. © 2023. 28 pages.
Mohammad Uzair, Hammad Qaiser, Muhammad Arshad, Aneesa Zafar, Shahid Bashir. © 2023. 23 pages.
Akila Muthuramalingam, Ashok Kumar Pandurangan, Subhamoy Banerjee. © 2023. 17 pages.
Body Bottom